Group Study of Simulated Driving fMRI Data by Multiset Canonical Correlation Analysis

被引:0
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作者
Yi-Ou Li
Tom Eichele
Vince D. Calhoun
Tulay Adali
机构
[1] University of Maryland Baltimore County,Department of Computer Science and Electrical Engineering
[2] University of Bergen,Department of Biological and Medical Psychology
[3] The Mind Research Network,Department of Electrical and Computer Engineering
[4] University of New Mexico,Department of Psychiatry
[5] Yale University School,undefined
[6] of Medicine,undefined
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关键词
Blind source separation; Canonical correlation analysis; fMRI; Simulated driving; Functional behavioral association;
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摘要
In this work, we apply a novel statistical method, multiset canonical correlation analysis (M-CCA), to study a group of functional magnetic resonance imaging (fMRI) datasets acquired during simulated driving task. The M-CCA method jointly decomposes fMRI datasets from different subjects/sessions into brain activation maps and their associated time courses, such that the correlation in each group of estimated activation maps across datasets is maximized. Therefore, the functional activations across all datasets are extracted in the order of consistency across different dataset. On the other hand, M-CCA preserves the uniqueness of the functional maps estimated from each dataset by avoiding concatenation of different datasets in the analysis. Hence, the cross-dataset variation of the functional activations can be used to test the hypothesis of functional-behavioral association. In this work, we study 120 simulated driving fMRI datasets and identify parietal-occipital regions and frontal lobe as the most consistently engaged areas across all the subjects and sessions during simulated driving. The functional-behavioral association study indicates that all the estimated brain activations are significantly correlated with the steering operation during the driving task. M-CCA thus provides a new approach to investigate the complex relationship between the brain functions and multiple behavioral variables, especially in naturalistic tasks as demonstrated by the simulated driving study.
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页码:31 / 48
页数:17
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